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Schizophrenia MEG Network Analysis Based on Kernel Granger Causality

Network analysis is an important approach to explore complex brain structures under different pathological and physiological conditions. In this paper, we employ the multivariate inhomogeneous polynomial kernel Granger causality (MKGC) to construct directed weighted networks to characterize schizoph...

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Autores principales: Wang, Qiong, Yao, Wenpo, Bai, Dengxuan, Yi, Wanyi, Yan, Wei, Wang, Jun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10378589/
https://www.ncbi.nlm.nih.gov/pubmed/37509953
http://dx.doi.org/10.3390/e25071006
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author Wang, Qiong
Yao, Wenpo
Bai, Dengxuan
Yi, Wanyi
Yan, Wei
Wang, Jun
author_facet Wang, Qiong
Yao, Wenpo
Bai, Dengxuan
Yi, Wanyi
Yan, Wei
Wang, Jun
author_sort Wang, Qiong
collection PubMed
description Network analysis is an important approach to explore complex brain structures under different pathological and physiological conditions. In this paper, we employ the multivariate inhomogeneous polynomial kernel Granger causality (MKGC) to construct directed weighted networks to characterize schizophrenia magnetoencephalography (MEG). We first generate data based on coupled autoregressive processes to test the effectiveness of MKGC in comparison with the bivariate linear Granger causality and bivariate inhomogeneous polynomial kernel Granger causality. The test results suggest that MKGC outperforms the other two methods. Based on these results, we apply MKGC to construct effective connectivity networks of MEG for patients with schizophrenia (SCZs). We measure three network features, i.e., strength, nonequilibrium, and complexity, to characterize schizophrenia MEG. Our results suggest that MEG of the healthy controls (HCs) has a denser effective connectivity network than that of SCZs. The most significant difference in the in-connectivity strength is observed in the right frontal network ([Formula: see text]). The strongest out-connectivity strength for all subjects occurs in the temporal area, with the most significant between-group difference in the left occipital area ([Formula: see text]). The total connectivity strength of the frontal, temporal, and occipital areas of HCs exhibits higher values compared with SCZs. The nonequilibrium feature over the whole brain of SCZs is significantly higher than that of the HCs ([Formula: see text]); however, the results of Shannon entropy suggest that healthy MEG networks have higher complexity than schizophrenia networks. Overall, MKGC provides a reliable approach to construct MEG brain networks and characterize the network characteristics.
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spelling pubmed-103785892023-07-29 Schizophrenia MEG Network Analysis Based on Kernel Granger Causality Wang, Qiong Yao, Wenpo Bai, Dengxuan Yi, Wanyi Yan, Wei Wang, Jun Entropy (Basel) Article Network analysis is an important approach to explore complex brain structures under different pathological and physiological conditions. In this paper, we employ the multivariate inhomogeneous polynomial kernel Granger causality (MKGC) to construct directed weighted networks to characterize schizophrenia magnetoencephalography (MEG). We first generate data based on coupled autoregressive processes to test the effectiveness of MKGC in comparison with the bivariate linear Granger causality and bivariate inhomogeneous polynomial kernel Granger causality. The test results suggest that MKGC outperforms the other two methods. Based on these results, we apply MKGC to construct effective connectivity networks of MEG for patients with schizophrenia (SCZs). We measure three network features, i.e., strength, nonequilibrium, and complexity, to characterize schizophrenia MEG. Our results suggest that MEG of the healthy controls (HCs) has a denser effective connectivity network than that of SCZs. The most significant difference in the in-connectivity strength is observed in the right frontal network ([Formula: see text]). The strongest out-connectivity strength for all subjects occurs in the temporal area, with the most significant between-group difference in the left occipital area ([Formula: see text]). The total connectivity strength of the frontal, temporal, and occipital areas of HCs exhibits higher values compared with SCZs. The nonequilibrium feature over the whole brain of SCZs is significantly higher than that of the HCs ([Formula: see text]); however, the results of Shannon entropy suggest that healthy MEG networks have higher complexity than schizophrenia networks. Overall, MKGC provides a reliable approach to construct MEG brain networks and characterize the network characteristics. MDPI 2023-06-30 /pmc/articles/PMC10378589/ /pubmed/37509953 http://dx.doi.org/10.3390/e25071006 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Wang, Qiong
Yao, Wenpo
Bai, Dengxuan
Yi, Wanyi
Yan, Wei
Wang, Jun
Schizophrenia MEG Network Analysis Based on Kernel Granger Causality
title Schizophrenia MEG Network Analysis Based on Kernel Granger Causality
title_full Schizophrenia MEG Network Analysis Based on Kernel Granger Causality
title_fullStr Schizophrenia MEG Network Analysis Based on Kernel Granger Causality
title_full_unstemmed Schizophrenia MEG Network Analysis Based on Kernel Granger Causality
title_short Schizophrenia MEG Network Analysis Based on Kernel Granger Causality
title_sort schizophrenia meg network analysis based on kernel granger causality
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10378589/
https://www.ncbi.nlm.nih.gov/pubmed/37509953
http://dx.doi.org/10.3390/e25071006
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